Pacific mackerel (Scomber japonicus) stock assessment for USA management
in the 2015-16 and 2016-17 fishing years
P. R. Crone and K. T. HillNOAA/SWFSC/FRD8901 La Jolla Shores Dr.La Jolla, CA 92037, USA
Agenda Item G.2.aSupplemental Stock Assessment PowerPoint
(Electronic Only)June 2015
• Distribution and biology• Data
o Landings, biological compositions, indices of abundance• Model
o Model selection and evaluationo Important areas of sensitivity analysis (candidate models A-G, H1b)
• Results/diagnosticso Model H3
• Unresolved problems and major uncertaintieso AT survey q uncertainty and population scale determination
• Future worko Field, laboratory, modeling, management
P. mackerel stock assessment (2015)
Distribution
Spawning Area
FisheriesSan Pedro
BahiaMagdalena
Ensenada
OR-WA
Monterey
San Diego
0
10,000
20,000
30,000
40,000
50,000
60,000
70,000
80,000
83 85 87 89 91 93 95 97 99 01 03 05 07 09 11 13
Landings (mt)
Fishing year
Commercial (USA)
Commercial (Mexico)
Recreational (USA)
P. mackerel landings
Candidate models (A-G, H1b, H3) (see Table 5, p. 54)P. mackerel stock assessment (2015)
Model H3 – STAT’s selected model
• Reflects an updated configuration that includes similar data and parameterizations as last accepted model for advising management
• Plausible configuration with reasonable fits to input time series
• Robust in most diagnostic investigations
• Results consistent with external information regarding stock size/availability, e.g., AT survey abundance index, unrealized quotas in USA, limited catches in Mexico
• Bottom-line results useful to management similar to model that included AT survey data
P. mackerel stock assessment (2015)
Model H3 – Fits to mean length-at-age dataP. mackerel stock assessment (2015)
CA comm. fishery age composition CPFV length composition
P. mackerel stock assessment (2015) – Model H3
Model H3 – Selectivity
P. mackerel stock assessment (2015) - Results
Model H3 – Fit to CPFV index of relative abundance
P. mackerel stock assessment (2015) - Results
Std. est. (fish/1,000 ang. hr)
Model H3 – Stock biomass (age 1+ fish)P. mackerel stock assessment (2015)
B (mt)
P. mackerel stock assessment (2015)Model H3 – Retrospective analysis
P. mackerel stock assessment (2015)Model H3 – Historical stock biomass (age 1+ fish)
Model H3 – Total and USA exploitation ratesP. mackerel stock assessment (2015)
P. mackerel stock assessment (2015) – HCRs
2015-16
2016-17
OFL = BIOMASS * E MSY * DISTRIBUTIONABCP-star = BIOMASS * BUFFERP-star * E MSY * DISTRIBUTIONHG = (BIOMASS - CUTOFF) * E MSY * DISTRIBUTION
BIOMASS (ages 1+, mt) 120,435P-star 0.45 0.40 0.35 0.30 0.25 0.20 0.15 0.10 0.05
ABC BufferTier 1 0.9558 0.9128 0.8705 0.8280 0.7844 0.7386 0.6886 0.6304 0.5531ABC BufferTier 2 0.9135 0.8333 0.7577 0.6855 0.6153 0.5455 0.4741 0.3974 0.3060
E MSY 0.30CUTOFF (mt) 18,200
DISTRIBUTION (U.S.) 0.70
OFL = 25,291ABCTier 1 = 24,173 23,087 22,016 20,940 19,839 18,681 17,415 15,944 13,990ABCTier 2 = 23,104 21,074 19,164 17,338 15,562 13,798 11,992 10,052 7,738
HG = 21,469
Harvest Control Rule Formulas
Harvest Formula Parameters
Harvest Control Rule Values (mt)
OFL = BIOMASS * E MSY * DISTRIBUTIONABCP-star = BIOMASS * BUFFERP-star * E MSY * DISTRIBUTIONHG = (BIOMASS - CUTOFF) * E MSY * DISTRIBUTION
BIOMASS (ages 1+, mt) 118,968P-star 0.45 0.40 0.35 0.30 0.25 0.20 0.15 0.10 0.05
ABC BufferTier 1 0.9558 0.9128 0.8705 0.8280 0.7844 0.7386 0.6886 0.6304 0.5531ABC BufferTier 2 0.9135 0.8333 0.7577 0.6855 0.6153 0.5455 0.4741 0.3974 0.3060
E MSY 0.30CUTOFF (mt) 18,200
DISTRIBUTION (U.S.) 0.70
OFL = 24,983ABCTier 1 = 23,878 22,805 21,747 20,685 19,597 18,453 17,203 15,750 13,819ABCTier 2 = 22,822 20,817 18,930 17,127 15,372 13,629 11,846 9,929 7,644
HG = 21,161
Harvest Control Rule Formulas
Harvest Formula Parameters
Harvest Control Rule Values (mt)
• AT surveyo Long-term support needed for monitoring small pelagic species assemblageo Expand survey area (address stock distribution assumptions)o Improve trawl sampling operations
• Model developmento Develop a prior and plausible bounds for catchability coefficient (q)o Population scale (selectivity/robustness) Selectivity: dome-shaped vs. asymptotic (fishery age compositions) Age data from all fisheries/survey; more flexible selectivity forms, time-varying
processes, data weighting schemes
• International relationso Survey collaboration, improve fishery data exchange
• Fishery/survey biological samplingo Pacific NW size/age data, AT survey age data, Mexico size/age datao Coordinated production ageing programs
Research and Data Needs